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Software License

DevOps For Machine Learning | MLOps

This repository is created by Mohammad Ghodratigohar for hands-on MLOps workshop using Azure Machine Learning and Azure DevOps.

Complete implementation and explanation of this repository is recorded in these 10 part tutorial video series: Video Series Playlist

Part1, Part2, Part3, Part4, Part5, Part6, Part7, Part8, Part9, Part10

For any further inquiries or questions, please contact me at mo.ghodrati95@gmail.com .

ML Loop

MLOps Workflow

Machine Learning Operations (MLOps) is based on DevOps principles and practices that increase the efficiency of workflows.

This repository contains codes and guidelines for configuring the MLOps workflow with Azure as shown below:

Flow

MLOps with Azure Machine Learning

Azure Machine Learning provides the following MLOps capabilities:

  • Machine Learning pipelines allow you to define repeatable and reusable steps for your data preparation, training, and scoring processes.
  • Create reusable software environments for training and deploying models.
  • Register, package, and deploy models from anywhere. You can also track associated metadata required to use the model.
  • Capture the governance data for the end-to-end ML lifecycle. The logged information can include who is publishing models, why changes were made, and when models were deployed or used in production.
  • Notify and alert on events in the ML lifecycle. For example, experiment completion, model registration, model deployment, and data drift detection.
  • Monitor ML applications for operational and ML-related issues. Compare model inputs between training and inference, explore model-specific metrics, and provide monitoring and alerts on your ML infrastructure.
  • Automate the end-to-end ML lifecycle with Azure Machine Learning and Azure Pipelines. Using pipelines allows you to frequently update models, test new models, and continuously roll out new ML models alongside your other applications and services.

ML Lifecycle